Sehgal Chandra M, Cary Theodore W, Kangas Sarah A, Weinstein Susan P, Schultz Susan M, Arger Peter H, Conant Emily F
Department of Radiology, University of Pennsylvania, Philadelphia 19104, USA.
J Ultrasound Med. 2004 Sep;23(9):1201-9. doi: 10.7863/jum.2004.23.9.1201.
To evaluate the role of quantitative margin features in the computer-aided diagnosis of malignant and benign solid breast masses using sonographic imaging.
Sonographic images from 56 patients with 58 biopsy-proven masses were analyzed quantitatively for the following features: margin sharpness, margin echogenicity, and angular variation in margin. Of the 58 masses, 38 were benign and 20 were malignant. Each feature was evaluated individually and in combination with the others to determine its association with malignancy. The combination of features yielding the highest association with malignancy was analyzed by logistic regression to determine the probability of malignancy. The performance of the probability measurements was evaluated by receiver operating characteristic analysis using a round-robin technique.
Margin sharpness, margin echogenicity, and angular variation in margin were significantly different for the malignant and benign masses (P < .03, 2-tailed Student t test). According to quantitative measures, tumor-tissue margins of the malignant masses were less distinct than for the benign masses. Although the mean size of the lesions for the two groups was the same, the mean age of the patients was statistically different (P = .000625). After logistic regression analysis, the individual features age, margin sharpness, margin echogenicity, and angular variation in margin were found to be associated with the probability of malignancy (P < .03). The area under the receiver operating characteristic curve +/- SD for the 3-feature logistic regression model combining age, margin echogenicity, and angular variation of margin was 0.87 +/- 0.05.
The proposed quantitative margin features are robust and can reliably measure margin distinctiveness. These features combined with logistic regression analysis can be useful for computer-aided diagnosis of solid breast lesions.
利用超声成像评估定量边缘特征在乳腺实性肿块良恶性计算机辅助诊断中的作用。
对56例患者的58个经活检证实的肿块的超声图像进行以下特征的定量分析:边缘清晰度、边缘回声性和边缘角度变化。58个肿块中,38个为良性,20个为恶性。对每个特征单独及与其他特征联合进行评估,以确定其与恶性肿瘤的相关性。通过逻辑回归分析产生与恶性肿瘤相关性最高的特征组合,以确定恶性肿瘤的概率。采用循环技术通过受试者操作特征分析评估概率测量的性能。
恶性和良性肿块的边缘清晰度、边缘回声性和边缘角度变化有显著差异(P <.03,双侧Student t检验)。根据定量测量,恶性肿块的肿瘤组织边缘比良性肿块更不清晰。尽管两组病变的平均大小相同,但患者的平均年龄在统计学上有差异(P =.000625)。逻辑回归分析后发现,年龄、边缘清晰度、边缘回声性和边缘角度变化等个体特征与恶性肿瘤的概率相关(P <.03)。结合年龄、边缘回声性和边缘角度变化的三特征逻辑回归模型的受试者操作特征曲线下面积±标准差为0.87±0.05。
所提出的定量边缘特征稳健,能够可靠地测量边缘清晰度。这些特征与逻辑回归分析相结合可用于乳腺实性病变的计算机辅助诊断。